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This study provides information about vulnerabilities within the targeted population and contributes to reflection within UNHCR on how to interpret their multisectorial Home Visit assessments. By exploring relationships between vulnerability indicators and other
...
data collected, the report outlines key trends and relationships. The report details predefined VAF indicators and then provides an in-depth descriptive analysis for each sector
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The global burden of disease (GBD) study provides information about fatal and non-fatal health outcomes around the world.
The objective of this work is to describe the burden of mental disorders among children aged 5–14 years in each of the six regions of the World Health Organisation.
...
Data come from the GBD 2015 study. Outcomes: disability-adjusted life-years (DALYs) are the main indicator of GBD studies and are built from years of life lost (YLLs) and years of life lived with disability (YLDs).
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Global Burden of Disease Country Profiles
recommended
The Country Profiles provide an overview of findings from the Global Burden of Disease (GBD). They are based on over 80,000 different data sources used by researchers to produce the most scientifically rigorous estimates possible. Estimates from the
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GBD study may differ from national statistics due to differences in data sources and methodology. These profiles are meant to be freely downloaded and distributed
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The National Action Plan (NAP) has been developed based on the model recommended in the global Action Plan. Local data on on-going interventions were collected from technical informants in the various areas of work. These were analysed using the pol
...
icy framework provided by the AMR policy document. Interventions were developed to address gaps in all five objectives of the global Action Plan. Further consultations were done to ensure that the recommended interventions were feasible, valid and relevant within the systemic contexts pertaining to the various affected sectors.
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This year’s MPI results show that more than two-thirds of the multidimensionally poor—886 millionpeople—live in middle-income countries. A further 440 million live in low-income countries. In both groups, data show, simple national averagescan
...
hide enormous inequality inpatterns of povertywithin countries. For instance, in Uganda 55 percentof the population experience multidimensional poverty—similartotheaverage in Sub-Saharan Africa. But Kampala, the capital city, has an MPI rate of sixpercent, whileinthe Karamojaregion, the MPI soars to 96 percent—meaningthat partsof Ugandaspan the extremes of Sub-Saharan Africa.There is even inequality under the same roof. In South Asia, for example, almost a quarter ofchildren under five live in households where at least one child in the household is malnourished but at least one child is not.
There is also inequality among the poor. Findings of the2019 global MPI paint a detailed picture of the many differences in how-and how deeply -people experience poverty. Deprivationsamong the poor varyenormously: in general, higher MPI valuesgo hand in hand with greater variationin the intensity of poverty. Results also show that children suffer poverty more intensely than adults and are more likely to be deprived in all 10 of the MPI indicators, lackingessentialssuch as clean water, sanitation, adequate nutrition or primary education
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The document describes the use of strategic information at various stages of the response in the context of strengthening broader health information systems. Strategic information can be defined as data collected at all service delivery and administ
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rative levels to inform policy and programme decisions.
more
A resource for pesticide registrars and regulators.
The WHO urged governments to restrict access to highly toxic pesticides used for self-poisoning . Other effective interventions include education, youth intervention programs and follow-up of people at risk—and better
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data. Only 80 out of 183 WHO member states reported high-quality vital registration data in 2016
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The aim of the people-centred framework is to help countries to develop fully prioritized and budgeted NSPs based on a culture of making full use of the available data, which are aligned with national planning cycles and which provide the basis for
...
a robust national response that can accelerate progress towards the goal of ending TB. In addition, applying the framework for other possible applications according to the country’s planning and policy cycle encourages the culture of data utilization and evidence translation into decision making and planning.
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This publication provides a practical tool to support countries in strengthening surveillance of WASH in schools. The findings will inform the development of supportive regulations and improvement planning to safeguard children’s health, well-being, dignity and cognitive performance. The tool also
...
enables countries to use the data collected to facilitate policy dialogue and inform international reporting, including on progress towards achieving the Sustainable Development Goal targets related to WASH in schools.
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This implementation tool describes the recommended approaches for routine monitoring of toxicity integrated with the national monitoring and evaluation system and targeted approaches to monitoring toxicity to enable enhanced monitoring and reporting of treatment-limiting toxicity to support country
...
implementation and generation of local data.
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Senegal is on course to meet the global target for under-five overweight, but is off course to meet the targets for all other indicators analysed with adequate data.
Senegal’s substantial and sustained progress against malaria is an inspiring public health success story, and a source of potential lessons for other countries on the path to elimination. This case study describes three major success factors—(1) outstanding leadership and partner engagement, (2)
...
the achievement and maintenance of high intervention coverage levels, and (3) a thriving data culture—and explores several exciting new opportunities to consolidate and expand upon Senegal’s two decades of impact.
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Accessed on 01.03.2020
Since its inception in 1995, the Multiple Indicator Cluster Surveys, known as MICS, has become the largest source of statistically sound and internationally comparable data on women and children worldwide. In countries as d
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iverse as Costa Rica, Mali and Qatar, trained fieldwork teams conduct face-to-face interviews with household members on a variety of topics – focusing mainly on those issues that directly affect the lives of children and women.
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The Global Health Network is an open source platform that provides trusted knowledge, guidance, tools and resources to support the generation of more and better health research data. During emerging outbreaks it is vital to learn as much as possible
...
to generate evidence on best practice for prevention, diagnosis and treatment and to facilitate effective preparedness and response for future outbreaks.
This pop-up space for 2019 Novel Coronavirus COVID-19 (formerly 2019-nCoV) supports evidence generation by pooling protocols, tools, guidance, templates, and research standards generated by researchers and networks working on the response to this outbreak. Findings from previous outbreaks, largely obtained during MERS and SARS, are also available. This all aims to make research faster and easier and to enable standardised, quality data to be collected and prepared for sharing.
Latest updates will be provided on transmission as well as recommendations for healthcare professionals on transmission, disease management, and care.
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Accessed on 03.03.2020
The country recognizes the importance of family planning as they focus on achieving a demographic dividend. In order to improve the service delivery and supply chain, Senegal is strengthening its data management and reporting
...
. Domestic resource mobilization for family planning remains a key challenges for Senegal.
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Safe disposal of children’s feces is as essential as the safe disposal of adults’ feces. Th is brief provides an overview of the available data on child feces disposal in Burkina Faso and concludes with ideas to strengthen safe disposal practice
...
s, based on emerging good practice. Th e Joint Monitoring Programme for Water Supply and Sanitation (JMP) tracks progress toward the Millennium Development Goal 7 target to halve, by 2015, the proportion of people without sustainable access to safe drinking water and basic sanitation. Th e JMP standardized defi nition for an improved sanitation facility is one that hygienically separates human excreta from human contact.
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Checklist for hospitals preparing for the reception and care of coronavirus 2019 (COVID-19) patients
recommended
This checklist has been developed to support hospital preparedness for the management of COVID-19 patients.
Elements to be assessed have been divided into the following areas:
Establishment of a core team and key internal and external contact points
Human, material and facility capacit
...
y
Communication and data protection
Hand hygiene, personal protective equipment (PPE), and waste management
Triage, first contact and prioritisation
Patient placement, moving of the patients in the facility, and visitor access
Environmental cleaning
For each area mentioned above, the elements or processes were identified and the items to be checked are listed below.
A procedure for the self-auditing of compliance with this checklist should be considered.
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The second ECDC/EFSA/EMA joint report on the integrated analysis of antimicrobial consumption (AMC) and antimicrobial resistance (AMR) in bacteria from humans and food-producing animals addressed data obtained by the Agencies’ EU-wide surveillance
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networks for 2013–2015. AMC in both sectors, expressed in mg/kg of estimated biomass, were compared at country and European level. Substantial variations between countries were observed in both sectors. Estimated data on AMC for pigs and poultry were used for the first time. Univariate and multivariate analyses were applied to study associations between AMC and AMR. In 2014, the average AMC was higher in animals (152 mg/kg) than in humans (124 mg/kg), but the opposite applied to the median AMC (67 and 118 mg/kg, respectively). In 18 of 28 countries, AMC was lower in animals than in humans. Univariate analysis showed statistically-significant (p < 0.05) associations between AMC and AMR for fluoroquinolones and Escherichia coli in both sectors, for 3rd- and 4th-generation cephalosporins and E. coli in humans, and tetracyclines and polymyxins and E. coli in animals. In humans, there was a statistically-significant association between AMC and AMR for carbapenems and polymyxins in Klebsiella pneumoniae. Consumption of macrolides in animals was significantly associated with macrolide resistance in Campylobacter coli in animals and humans. Multivariate analyses provided a unique approach to assess the contributions of AMC in humans and animals and AMR in bacteria from animals to AMR in bacteria from humans. Multivariate analyses demonstrated that 3rd- and 4th-generation cephalosporin and fluoroquinolone resistance in E. coli from humans was associated with corresponding AMC in humans, whereas resistance to fluoroquinolones in Salmonella spp. and Campylobacter spp. from humans was related to consumption of fluoroquinolones in animals. These results suggest that from a ‘One-health’ perspective, there is potential in both sectors to further develop prudent use of antimicrobials and thereby reduce AMR.
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John Hopkins COVID-19 map
recommended
Interactive Map
You’ve probably noticed that the map has been evolving along with the virus. Now, it sports new layers of data—including a close-up section on the US, with details on testing, hospitalizations, and country-level demographic
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data.
The map provides “more nuance on what’s happening to support decision-making.
For example, the new details can help prepare hospitals to better anticipate staffing and resource shortages
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